Staff Machine Learning Engineer

SA Technologies

San Jose, CA

JOB DETAILS
SKILLS
Algorithms, Analysis Skills, Artificial Intelligence (AI), Authentication, Capability Maturity Model Integration (CMMI), Cloud Computing, Communications Protocols, Computer Architecture, Computer Science, Computer Vision, Continuous Deployment/Delivery, Continuous Improvement, Continuous Integration, Data Processing, Data Quality, Data Sets, Ecosystems, Electrical Engineering, FPGA, GPU (Graphics Processing Unit), Hardware Design, Inference Engine, Information Technology Consulting, Injections, MCP - Microsoft Certified Professional, Machine Learning, Metrics, Microsoft Product Family, Model Verification, Online Chat, Open Source, Production Control, Python Programming/Scripting Language, RTL Design, Research & Development (R&D), Security Protocols, Software Agents, Technical Analysis, Traceability, VHDL Hardware Description Language, Verilog Hardware Description Language
LOCATION
San Jose, CA
POSTED
Today
Unlock New Career Opportunities with SA Technologies Inc.

We’re Hiring: Staff Machine Learning Engineer

At SA Technologies Inc., we believe in turning career aspirations into reality. As a CMMI Level 5 and Great Place to Work® Certified global IT consulting and services company—and recognized as one of the Best Places for Women—we are committed to building an inclusive, supportive, and high-performance workplace



 

Job Description

 

Job Title: Staff Machine Learning Engineer
Location: - San Jose, CA
Full Time role
Direct Client:
100% Onsite role
 
Position Description
 
Role Description
 

Job Description

This is a "full-stack" ML systems role for a senior individual contributor and technical architect. You will be responsible for designing the complete ML ecosystem for our edge devices, from the cloud-native MLOps platform down to the bare-metal model optimization. 

This unique role blends three key domains: 

  1. MLOps & Data: You will architect the entire data lifecycle, including our CI/CD pipelines, data-labeling loops, and on-device monitoring. 
  1. Agentic & Edge AI: You will lead the design of autonomous agents that run on our edge devices, using domain knowledge in log analysis and computer vision. 
  1. Systems & Hardware: You will be the "hardware-aware" expert, bridging our ML software with our silicon team to ensure our models are hyper-optimized for our custom NPU. 

You are the engineer who will not only build our ML platform but also design the intelligent agents it deploys and ensure they run faster and more securely than anyone else's. 

Key Responsibilities 

Architecture & Leadership: 

  • Act as a senior individual contributor, leading by example with hands-on coding, design, and analysis across the entire ML stack. 
  • Define the end-to-end architecture for our MLOps, agentic AI, and model optimization strategy. 

MLOps & Data Platform: 

  • Design and implement our data processing and versioning pipelines, ensuring data integrity and traceability. 
  • Build the infrastructure for our Human-in-the-Loop (HITL) and AI-in-the-Loop (Active Learning) data labeling systems to continuously improve our datasets. 
  • Develop a comprehensive, lightweight on-device monitoring system to track not just operational metrics but also inference quality and concept drift. 

Agentic & Edge Development: 

  • Design and development of autonomous agents that operate on our resource-constrained edge devices. 
  • Integrate deep domain knowledge, including real-time log analysis, computer vision, and interaction with open-source system tools. 

Security & Optimization: 

  • Define and implement the complete security and verification framework for our edge models. This includes MCP/A2A-like secure protocols, MCP authentication, entity verification (e.g., model signing), and model injection prevention. 
  • Serve as the primary technical bridge to our silicon teams. Collaborate with RTL designers to influence future NPU and FPGA architecture from an ML software perspective. 
  • Lead R&D on model optimization for our specific AI inference engine, applying both graph-level (e.g., operator fusion) and OP-level (e.g., custom ops) techniques. 

Qualifications

  • 8-10+ years of hands-on experience in machine learning, with a proven track record as a senior or staff-level individual contributor. 
  • Ph.D. or M.S. in Computer Science, Electrical Engineering, or a related field (or equivalent practical experience). 
  • Expert-level programming in Python and deep experience with ML frameworks (e.g., PyTorch, TensorFlow). 
  • Deep theoretical understanding of modern ML algorithms (e.g., Transformers). 
  • A strong foundational understanding of computer architecture, digital logic, and the role of RTL (Verilog/VHDL) in the hardware design lifecycle. 
  • Proven experience architecting and building end-to-end MLOps lifecycles, from data ingestion to production monitoring and labeling loops. 
  • Proven experience developing agentic systems or applications using LLMs. 
  • Demonstrable domain knowledge in log analysis AND/OR computer vision. 
  • Experience with on-device model security (verification, anti-injection) and secure communication protocols. 
  • Hands-on experience optimizing models for hardware (NPUs, GPUs) at graph and operator levels. 
 
Why SA Technologies Inc.?
 
Empowering Work Environment: A Great Place to Work, especially celebrated as one of the Best Places for Women.
Excellence and Quality: A CMMI Level 5 Company, ensuring operational and service excellence.
Globally Acclaimed: A Microsoft Gold Partner and Google Partner, with over 20 years of global IT consulting and Development solutions delivery.
 
Have queries? We’re here to assist you! Chat live with our recruiter or connect with the job owner directly:
Email:  

suraj.dinda@satechglobal.us


Embark on a rewarding journey together with us! At SA Technologies Inc., your journey begins with a friendly technical assessment, providing a stage to highlight your unique skills.



About the Company

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SA Technologies